Ahmad Iftikhar, Raja Muhammad Asif Zahoor, Bilal Muhammad, Ashraf Farooq
Department of Mathematics, University of Gujrat, Gujrat, 50700 Pakistan.
Department of Electrical Engineering, COMSATS Institute of Information Technology, Attock, 43600 Pakistan.
Springerplus. 2016 Oct 24;5(1):1866. doi: 10.1186/s40064-016-3517-2. eCollection 2016.
This study reports novel hybrid computational methods for the solutions of nonlinear singular Lane-Emden type differential equation arising in astrophysics models by exploiting the strength of unsupervised neural network models and stochastic optimization techniques. In the scheme the neural network, sub-part of large field called soft computing, is exploited for modelling of the equation in an unsupervised manner. The proposed approximated solutions of higher order ordinary differential equation are calculated with the weights of neural networks trained with genetic algorithm, and pattern search hybrid with sequential quadratic programming for rapid local convergence. The results of proposed solvers for solving the nonlinear singular systems are in good agreements with the standard solutions. Accuracy and convergence the design schemes are demonstrated by the results of statistical performance measures based on the sufficient large number of independent runs.
本研究报告了一种新颖的混合计算方法,用于求解天体物理模型中出现的非线性奇异Lane-Emden型微分方程,该方法利用了无监督神经网络模型和随机优化技术的优势。在该方案中,神经网络作为被称为软计算的大领域的子部分,以无监督方式用于对方程进行建模。通过用遗传算法训练的神经网络权重以及与序列二次规划混合的模式搜索来计算高阶常微分方程的拟解,以实现快速局部收敛。所提出的求解非线性奇异系统的求解器的结果与标准解吻合良好。基于大量独立运行的统计性能度量结果证明了设计方案的准确性和收敛性。